Effect of Elevated Temperature on Physical Activity and Falls in Low-Income Older Adults Using Zero-Inflated Poisson and Graphical Models.

IF 2.9 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Information (Switzerland) Pub Date : 2025-06-01 Epub Date: 2025-05-26 DOI:10.3390/info16060442
Tho Nguyen, Dahee Kim, Yingru Li, Christopher T Emrich, Jennifer Crook, Ladda Thiamwong, Rui Xie
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Abstract

High ambient temperature poses a significant public health challenge, particularly for low-income older adults (LOAs) with preexisting health and social issues and disproportionate living conditions, placing them at a vulnerable condition of heat-related illnesses and associated public health risks. This study aims to utilize advanced statistical regression and machine learning methods to analyze complex relationships between elevated temperature, physical activity (PA), sociodemographic factors and fall incidents among LOAs. We collected data from a cohort of 304 LOAs aged 60 and above, living in free-living conditions in low-income communities in Central Florida, USA. Zero-inflated Poisson regression was employed to examine the linear relationships, which reflect the zero-abundant nature of fall incidents. Then, an advanced machine learning approach-the mixed undirected graphical model (MUGM)-was employed to further explore the intricate, nonlinear relationships among daily PA, daily temperature, and fall incidents. The findings suggest that more moderate-to-vigorous PA is significantly associated with fewer fall incidents (RR = 0.90, 95% CI: (0.816, 0.993), p = 0.037), after adjusting for other variables. In contrast, elevated temperature is strongly linked to a greater risk of falls (RR = 1.733, 95% CI: (1.581, 1.901), p < 0.0001), potentially reflecting seasonal influences. Although higher temperature increases fall events, this effect is mitigated among LOAs with increased sedentary behavior (p < 0.0001). Additionally, findings from the MUGM reinforce the intricate nature of falls. Fall counts were highly correlated with race and positively associated with temperature, highlighting the importance of tailoring fall prevention strategies to account for seasonal variations and health disparities, and promoting PA.

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使用零膨胀泊松和图形模型研究高温对低收入老年人身体活动和跌倒的影响。
高环境温度构成了重大的公共卫生挑战,特别是对于那些先前存在健康和社会问题以及不成比例的生活条件的低收入老年人,使他们处于易患与热有关的疾病和相关公共卫生风险的境地。本研究旨在利用先进的统计回归和机器学习方法来分析温度升高、身体活动(PA)、社会人口因素与loa中跌倒事件之间的复杂关系。我们收集了304名60岁及以上的loa队列数据,他们生活在美国佛罗里达州中部低收入社区的自由生活条件下。采用零膨胀泊松回归来检验线性关系,这反映了坠落事件的零丰性。然后,采用一种先进的机器学习方法-混合无向图形模型(MUGM)-进一步探索日PA,日温度和坠落事件之间复杂的非线性关系。研究结果表明,在调整其他变量后,更多的中高强度PA与较少的跌倒事件显著相关(RR = 0.90, 95% CI:(0.816, 0.993), p = 0.037)。相反,温度升高与更大的跌倒风险密切相关(RR = 1.733, 95% CI:(1.581, 1.901), p < 0.0001),这可能反映了季节影响。虽然较高的温度会增加跌倒事件,但这种影响在久坐行为增加的loa中被缓解(p < 0.0001)。此外,MUGM的发现强化了瀑布的复杂性。跌倒次数与种族高度相关,与温度呈正相关,突出了定制预防跌倒策略的重要性,以解释季节变化和健康差异,并促进PA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Information (Switzerland)
Information (Switzerland) Computer Science-Information Systems
CiteScore
6.90
自引率
0.00%
发文量
515
审稿时长
11 weeks
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